Much like humans, robots should have the ability to leverage knowledge from previously learned tasks in order to learn new tasks quickly in new and unfamiliar environments. Despite this, most robot learning approaches have focused on learning a single task, from scratch, with a limited notion of generalisation, and no way of leveraging the knowledge to learn other tasks more efficiently. One possible solution is meta-learning, but many of the related approaches are limited in their ability to scale to a large number of tasks and to learn further tasks without forgetting previously learned ones. With this in mind, we introduce Task-Embedded Control Networks, which employ ideas from metric learning in order to create a task embedding that can...
We introduce a simple new method for visual imitation learning, which allows a novel robot manipulat...
Robotics as a technology has an incredible potential for improving our everyday lives. Robots could ...
Robust and generalizable robots that can autonomously manipulate objects in semi-structured environm...
Humans can naturally learn to execute a new task by seeing it performed by other individuals once, a...
In this paper we explore few-shot imitation learning for control problems, which involves learning t...
Imitation learning has gained immense popularity because of its high sample-efficiency. However, in ...
Most people's imagination about robots has been shaped by Hollywood movies or novels, resulting in t...
Consider the following problem: given a few demonstrations of a task across a few different objects,...
In order for human-assisting robots to be deployed in the real world such as household environments,...
Advances in robotics have resulted in increases both in the availability of robots and also their co...
We present DOME, a novel method for one-shot imitation learning, where a task can be learned from ju...
In order to enable more widespread application of robots, we are required to reduce the human effort...
How can real robots with many degrees of freedom - without previous knowledge of themselves or their...
This letter combines an imitation learning approach with a model-based and constraint-based task spe...
Moving away from repetitive tasks, robots nowadays demand versatile skills that adapt to different s...
We introduce a simple new method for visual imitation learning, which allows a novel robot manipulat...
Robotics as a technology has an incredible potential for improving our everyday lives. Robots could ...
Robust and generalizable robots that can autonomously manipulate objects in semi-structured environm...
Humans can naturally learn to execute a new task by seeing it performed by other individuals once, a...
In this paper we explore few-shot imitation learning for control problems, which involves learning t...
Imitation learning has gained immense popularity because of its high sample-efficiency. However, in ...
Most people's imagination about robots has been shaped by Hollywood movies or novels, resulting in t...
Consider the following problem: given a few demonstrations of a task across a few different objects,...
In order for human-assisting robots to be deployed in the real world such as household environments,...
Advances in robotics have resulted in increases both in the availability of robots and also their co...
We present DOME, a novel method for one-shot imitation learning, where a task can be learned from ju...
In order to enable more widespread application of robots, we are required to reduce the human effort...
How can real robots with many degrees of freedom - without previous knowledge of themselves or their...
This letter combines an imitation learning approach with a model-based and constraint-based task spe...
Moving away from repetitive tasks, robots nowadays demand versatile skills that adapt to different s...
We introduce a simple new method for visual imitation learning, which allows a novel robot manipulat...
Robotics as a technology has an incredible potential for improving our everyday lives. Robots could ...
Robust and generalizable robots that can autonomously manipulate objects in semi-structured environm...